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Erschienen in: Engineering with Computers 5/2022

10.03.2022 | Original Article

MGNet: a novel differential mesh generation method based on unsupervised neural networks

verfasst von: Xinhai Chen, Tiejun Li, Qian Wan, Xiaoyu He, Chunye Gong, Yufei Pang, Jie Liu

Erschienen in: Engineering with Computers | Ausgabe 5/2022

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Abstract

Mesh generation accounts for a large number of workloads in the numerical analysis. In this paper, we introduce a novel differential method MGNet for structured mesh generation. The proposed method poses the meshing task as an optimization problem. It takes boundary curves as input, employs a well-designed neural network to study the potential meshing (mapping) rules, and finally outputs the mesh with a desired number of cells. The whole process is unsupervised and does not require a priori knowledge or measured datasets. We evaluate the performance of MGNet in terms of mesh quality, network designs, robustness, and overhead on different geometries and governing equations (elliptic and hyperbolic). The experimental results prove that, in all cases, the proposed method is capable of generating acceptable meshes and achieving comparable or superior meshing performance to the traditional algebraic and differential methods. The proposed MGNet also outperforms other neural network-based solvers and enables fast mesh generation using feedforward prediction techniques.

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Metadaten
Titel
MGNet: a novel differential mesh generation method based on unsupervised neural networks
verfasst von
Xinhai Chen
Tiejun Li
Qian Wan
Xiaoyu He
Chunye Gong
Yufei Pang
Jie Liu
Publikationsdatum
10.03.2022
Verlag
Springer London
Erschienen in
Engineering with Computers / Ausgabe 5/2022
Print ISSN: 0177-0667
Elektronische ISSN: 1435-5663
DOI
https://doi.org/10.1007/s00366-022-01632-7

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